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Perturbative approach to covariance matrix of the matter power spectrum

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Author(s): Mohammed, I; Seljak, U; Vlah, Z | Abstract: © 2016 The Authors. We evaluate the covariance matrix of the matter power spectrum using perturbation theory up to dominant terms… Click to show full abstract

Author(s): Mohammed, I; Seljak, U; Vlah, Z | Abstract: © 2016 The Authors. We evaluate the covariance matrix of the matter power spectrum using perturbation theory up to dominant terms at 1-loop order and compare it to numerical simulations.We decompose the covariance matrix into the disconnected (Gaussian) part, trispectrum from the modes outside the survey (supersample variance) and trispectrum from the modes inside the survey, and show how the different components contribute to the overall covariance matrix. We find the agreement with the simulations is at a 10 per cent level up to k ~ 1 h Mpc-1. We show that all the connected components are dominated by the large-scale modes (k l 0.1 h Mpc-1), regardless of the value of the wave vectors k, k' of the covariance matrix, suggesting that one must be careful in applying the jackknife or bootstrap methods to the covariance matrix. We perform an eigenmode decomposition of the connected part of the covariance matrix, showing that at higher k, it is dominated by a single eigenmode. The full covariance matrix can be approximated as the disconnected part only, with the connected part being treated as an external nuisance parameter with a known scale dependence, and a known prior on its variance for a given survey volume. Finally, we provide a prescription for how to evaluate the covariance matrix from small box simulations without the need to simulate large volumes.

Keywords: matter power; covariance; covariance matrix; power spectrum; matrix matter

Journal Title: Monthly Notices of the Royal Astronomical Society
Year Published: 2017

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